He Yong, Cui Zhongmin
ACT, Inc., Iowa City, IA, USA.
Appl Psychol Meas. 2020 Jun;44(4):296-310. doi: 10.1177/0146621619886050. Epub 2019 Nov 15.
Item parameter estimates of a common item on a new test form may change abnormally due to reasons such as item overexposure or change of curriculum. A common item, whose change does not fit the pattern implied by the normally behaved common items, is defined as an outlier. Although improving equating accuracy, detecting and eliminating of outliers may cause a content imbalance among common items. Robust scale transformation methods have recently been proposed to solve this problem when only one outlier is present in the data, although it is not uncommon to see multiple outliers in practice. In this simulation study, the authors examined the robust scale transformation methods under conditions where there were multiple outlying common items. Results indicated that the robust scale transformation methods could reduce the influences of multiple outliers on scale transformation and equating. The robust methods performed similarly to a traditional outlier detection and elimination method in terms of reducing the influence of outliers while keeping adequate content balance.
新测试形式上常见题目的项目参数估计可能会因题目过度曝光或课程变化等原因而异常变化。一个常见题目,如果其变化不符合正常表现的常见题目的隐含模式,则被定义为异常值。虽然提高了等值精度,但检测和消除异常值可能会导致常见题目之间的内容不平衡。最近有人提出了稳健的量表转换方法来解决数据中仅存在一个异常值的情况,尽管在实际中出现多个异常值并不罕见。在本模拟研究中,作者考察了存在多个异常常见题目的情况下的稳健量表转换方法。结果表明,稳健的量表转换方法可以减少多个异常值对量表转换和等值的影响。在减少异常值影响的同时保持足够的内容平衡方面,稳健方法的表现与传统的异常值检测和消除方法类似。